Automated Supply-Chain Quality Inspection Using Image Analysis and Machine Learning

  • Yuehan Zhu

Student thesis: Master, two years

Abstract

An image processing method for automatic quality assurance of Ericsson products is developed. The method consists of taking an image of the product, extract the product labels from the image, OCR the product numbers and make a database lookup to match the mounted product with the customer specification. The engineering innovation of the method developed in this report is that the OCR is performed using machine learning techniques. It is shown that machine learning can produce results that are on par or better than baseline OCR methods. The advantage with a machine learning based approach is that the associated neural network can be trained for the specific input images from the Ericsson factory. Imperfections in the image quality and varying type fonts etc. can be handled by properly training the net, a task that would have been very difficult with legacy OCR algorithms where poor OCR results typically need to be mitigated by improving the input image quality rather than changing the algorithm.

Date of Award2019-Oct-28
Original languageEnglish
SupervisorFredrik Frisk (Supervisor), Rikard Thomasson (Supervisor) & Qinghua Wang (Examiner)

Educational program

  • Master Programme with specialization in Embedded Systems

University credits

  • 15 HE credits

Swedish Standard Keywords

  • Computer Systems (20206)

Keywords

  • image analysis
  • computer vision
  • ocr
  • machine learning
  • neural networks
  • lstm networks

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